{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {},
   "outputs": [],
   "source": [
    "%load_ext autoreload\n",
    "%autoreload 2"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 43,
   "metadata": {},
   "outputs": [],
   "source": [
    "from utils.config import Config\n",
    "config_file = \"configs/config.json\"\n",
    "cfg = Config.from_file(config_file)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 44,
   "metadata": {},
   "outputs": [],
   "source": [
    "import os\n",
    "import io\n",
    "\n",
    "from models.videochat2_it import VideoChat2_it\n",
    "from utils.easydict import EasyDict\n",
    "import torch\n",
    "\n",
    "from transformers import StoppingCriteria, StoppingCriteriaList\n",
    "\n",
    "from PIL import Image\n",
    "import numpy as np\n",
    "import numpy as np\n",
    "from decord import VideoReader, cpu\n",
    "import torchvision.transforms as T\n",
    "from dataset.video_transforms import (\n",
    "    GroupNormalize, GroupScale, GroupCenterCrop, \n",
    "    Stack, ToTorchFormatTensor\n",
    ")\n",
    "from torchvision.transforms.functional import InterpolationMode\n",
    "\n",
    "from torchvision import transforms\n",
    "\n",
    "import matplotlib.pyplot as plt\n",
    "\n",
    "from IPython.display import Video, HTML\n",
    "\n",
    "from peft import get_peft_model, LoraConfig, TaskType\n",
    "import copy"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 45,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "application/json": {
       "ascii": false,
       "bar_format": null,
       "colour": null,
       "elapsed": 0.047385454177856445,
       "initial": 0,
       "n": 0,
       "ncols": null,
       "nrows": null,
       "postfix": null,
       "prefix": "Loading checkpoint shards",
       "rate": null,
       "total": 2,
       "unit": "it",
       "unit_divisor": 1000,
       "unit_scale": false
      },
      "application/vnd.jupyter.widget-view+json": {
       "model_id": "365e8758494d42e496d35d1e40c960f2",
       "version_major": 2,
       "version_minor": 0
      },
      "text/plain": [
       "Loading checkpoint shards:   0%|          | 0/2 [00:00<?, ?it/s]"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "# load stage2 model\n",
    "cfg.model.vision_encoder.num_frames = 4\n",
    "model = VideoChat2_it(config=cfg.model)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 59,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
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     ]
    }
   ],
   "source": [
    "# add lora to run stage3 model\n",
    "peft_config = LoraConfig(\n",
    "    task_type=TaskType.CAUSAL_LM, inference_mode=False, \n",
    "    r=16, lora_alpha=32, lora_dropout=0.\n",
    ")\n",
    "model.llama_model = get_peft_model(model.llama_model, peft_config)\n",
    "\n",
    "state_dict = torch.load(\"your_model_path/videochat2_7b_stage3.pth\", \"cpu\")\n",
    "\n",
    "if 'model' in state_dict.keys():\n",
    "    msg = model.load_state_dict(state_dict['model'], strict=False)\n",
    "else:\n",
    "    msg = model.load_state_dict(state_dict, strict=False)\n",
    "print(msg)\n",
    "\n",
    "model = model.eval()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 49,
   "metadata": {},
   "outputs": [],
   "source": [
    "def get_prompt(conv):\n",
    "    ret = conv.system + conv.sep\n",
    "    for role, message in conv.messages:\n",
    "        if message:\n",
    "            ret += role + \": \" + message + conv.sep\n",
    "        else:\n",
    "            ret += role + \":\"\n",
    "    return ret\n",
    "\n",
    "\n",
    "def get_prompt2(conv):\n",
    "    ret = conv.system + conv.sep\n",
    "    count = 0\n",
    "    for role, message in conv.messages:\n",
    "        count += 1\n",
    "        if count == len(conv.messages):\n",
    "            ret += role + \": \" + message\n",
    "        else:\n",
    "            if message:\n",
    "                ret += role + \": \" + message + conv.sep\n",
    "            else:\n",
    "                ret += role + \":\"\n",
    "    return ret\n",
    "\n",
    "\n",
    "def get_context_emb(conv, model, img_list, answer_prompt=None, print_res=False):\n",
    "    if answer_prompt:\n",
    "        prompt = get_prompt2(conv)\n",
    "    else:\n",
    "        prompt = get_prompt(conv)\n",
    "    if print_res:\n",
    "        print(prompt)\n",
    "    if '<VideoHere>' in prompt:\n",
    "        prompt_segs = prompt.split('<VideoHere>')\n",
    "    else:\n",
    "        prompt_segs = prompt.split('<ImageHere>')\n",
    "    assert len(prompt_segs) == len(img_list) + 1, \"Unmatched numbers of image placeholders and images.\"\n",
    "    with torch.no_grad():\n",
    "        seg_tokens = [\n",
    "            model.llama_tokenizer(\n",
    "                seg, return_tensors=\"pt\", add_special_tokens=i == 0).to(\"cuda:0\").input_ids\n",
    "            # only add bos to the first seg\n",
    "            for i, seg in enumerate(prompt_segs)\n",
    "        ]\n",
    "        seg_embs = [model.llama_model.base_model.model.model.embed_tokens(seg_t) for seg_t in seg_tokens]\n",
    "    mixed_embs = [emb for pair in zip(seg_embs[:-1], img_list) for emb in pair] + [seg_embs[-1]]\n",
    "    mixed_embs = torch.cat(mixed_embs, dim=1)\n",
    "    return mixed_embs\n",
    "\n",
    "\n",
    "def ask(text, conv):\n",
    "    conv.messages.append([conv.roles[0], text + '\\n'])\n",
    "        \n",
    "\n",
    "class StoppingCriteriaSub(StoppingCriteria):\n",
    "    def __init__(self, stops=[], encounters=1):\n",
    "        super().__init__()\n",
    "        self.stops = stops\n",
    "    def __call__(self, input_ids: torch.LongTensor, scores: torch.FloatTensor):\n",
    "        for stop in self.stops:\n",
    "            if torch.all((stop == input_ids[0][-len(stop):])).item():\n",
    "                return True\n",
    "        return False\n",
    "    \n",
    "    \n",
    "def answer(conv, model, img_list, do_sample=True, max_new_tokens=200, num_beams=1, min_length=1, top_p=0.9,\n",
    "               repetition_penalty=1.0, length_penalty=1, temperature=1.0, answer_prompt=None, print_res=False):\n",
    "    stop_words_ids = [\n",
    "        torch.tensor([835]).to(\"cuda:0\"),\n",
    "        torch.tensor([2277, 29937]).to(\"cuda:0\")]  # '###' can be encoded in two different ways.\n",
    "    stopping_criteria = StoppingCriteriaList([StoppingCriteriaSub(stops=stop_words_ids)])\n",
    "    \n",
    "    conv.messages.append([conv.roles[1], answer_prompt])\n",
    "    embs = get_context_emb(conv, model, img_list, answer_prompt=answer_prompt, print_res=print_res)\n",
    "    with torch.no_grad():\n",
    "        outputs = model.llama_model.generate(\n",
    "            inputs_embeds=embs,\n",
    "            max_new_tokens=max_new_tokens,\n",
    "            stopping_criteria=stopping_criteria,\n",
    "            num_beams=num_beams,\n",
    "            do_sample=do_sample,\n",
    "            min_length=min_length,\n",
    "            top_p=top_p,\n",
    "            repetition_penalty=repetition_penalty,\n",
    "            length_penalty=length_penalty,\n",
    "            temperature=temperature,\n",
    "        )\n",
    "    output_token = outputs[0]\n",
    "    if output_token[0] == 0:  # the model might output a unknow token <unk> at the beginning. remove it\n",
    "            output_token = output_token[1:]\n",
    "    if output_token[0] == 1:  # some users find that there is a start token <s> at the beginning. remove it\n",
    "            output_token = output_token[1:]\n",
    "    output_text = model.llama_tokenizer.decode(output_token, add_special_tokens=False)\n",
    "    output_text = output_text.split('###')[0]  # remove the stop sign '###'\n",
    "    output_text = output_text.split('Assistant:')[-1].strip()\n",
    "    conv.messages[-1][1] = output_text\n",
    "    return output_text, output_token.cpu().numpy()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 51,
   "metadata": {},
   "outputs": [],
   "source": [
    "def get_index(num_frames, num_segments):\n",
    "    seg_size = float(num_frames - 1) / num_segments\n",
    "    start = int(seg_size / 2)\n",
    "    offsets = np.array([\n",
    "        start + int(np.round(seg_size * idx)) for idx in range(num_segments)\n",
    "    ])\n",
    "    return offsets\n",
    "\n",
    "\n",
    "def load_video(video_path, num_segments=8, return_msg=False, resolution=224):\n",
    "    vr = VideoReader(video_path, ctx=cpu(0), num_threads=1)\n",
    "    num_frames = len(vr)\n",
    "    frame_indices = get_index(num_frames, num_segments)\n",
    "\n",
    "    # transform\n",
    "    crop_size = resolution\n",
    "    scale_size = resolution\n",
    "    input_mean = [0.48145466, 0.4578275, 0.40821073]\n",
    "    input_std = [0.26862954, 0.26130258, 0.27577711]\n",
    "\n",
    "    transform = T.Compose([\n",
    "        GroupScale(int(scale_size), interpolation=InterpolationMode.BICUBIC),\n",
    "        GroupCenterCrop(crop_size),\n",
    "        Stack(),\n",
    "        ToTorchFormatTensor(),\n",
    "        GroupNormalize(input_mean, input_std) \n",
    "    ])\n",
    "\n",
    "    images_group = list()\n",
    "    for frame_index in frame_indices:\n",
    "        img = Image.fromarray(vr[frame_index].numpy())\n",
    "        images_group.append(img)\n",
    "    torch_imgs = transform(images_group)\n",
    "    if return_msg:\n",
    "        fps = float(vr.get_avg_fps())\n",
    "        sec = \", \".join([str(round(f / fps, 1)) for f in frame_indices])\n",
    "        # \" \" should be added in the start and end\n",
    "        msg = f\"The video contains {len(frame_indices)} frames sampled at {sec} seconds.\"\n",
    "        return torch_imgs, msg\n",
    "    else:\n",
    "        return torch_imgs"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 52,
   "metadata": {},
   "outputs": [],
   "source": [
    "def get_sinusoid_encoding_table(n_position=784, d_hid=1024, cur_frame=8, ckpt_num_frame=4, pre_n_position=784): \n",
    "    ''' Sinusoid position encoding table ''' \n",
    "    # TODO: make it with torch instead of numpy \n",
    "    def get_position_angle_vec(position): \n",
    "        return [position / np.power(10000, 2 * (hid_j // 2) / d_hid) for hid_j in range(d_hid)] \n",
    "    \n",
    "    # generate checkpoint position embedding\n",
    "    sinusoid_table = np.array([get_position_angle_vec(pos_i) for pos_i in range(pre_n_position)]) \n",
    "    sinusoid_table[:, 0::2] = np.sin(sinusoid_table[:, 0::2]) # dim 2i \n",
    "    sinusoid_table[:, 1::2] = np.cos(sinusoid_table[:, 1::2]) # dim 2i+1 \n",
    "    sinusoid_table = torch.tensor(sinusoid_table, dtype=torch.float, requires_grad=False).unsqueeze(0)\n",
    "    \n",
    "    print(f\"n_position: {n_position}\")\n",
    "    print(f\"pre_n_position: {pre_n_position}\")\n",
    "    \n",
    "    if n_position != pre_n_position:\n",
    "        T = ckpt_num_frame # checkpoint frame\n",
    "        P = 14 # checkpoint size\n",
    "        C = d_hid\n",
    "        new_P = int((n_position // cur_frame) ** 0.5) # testing size\n",
    "        if new_P != 14:\n",
    "            print(f'Pretraining uses 14x14, but current version is {new_P}x{new_P}')\n",
    "            print(f'Interpolate the position embedding')\n",
    "            sinusoid_table = sinusoid_table.reshape(-1, T, P, P, C)\n",
    "            sinusoid_table = sinusoid_table.reshape(-1, P, P, C).permute(0, 3, 1, 2)\n",
    "            sinusoid_table = torch.nn.functional.interpolate(\n",
    "                sinusoid_table, size=(new_P, new_P), mode='bicubic', align_corners=False)\n",
    "            # BT, C, H, W -> BT, H, W, C ->  B, T, H, W, C\n",
    "            sinusoid_table = sinusoid_table.permute(0, 2, 3, 1).reshape(-1, T, new_P, new_P, C)\n",
    "            sinusoid_table = sinusoid_table.flatten(1, 3)  # B, THW, C\n",
    "    \n",
    "    if cur_frame != ckpt_num_frame:\n",
    "        print(f'Pretraining uses 4 frames, but current frame is {cur_frame}')\n",
    "        print(f'Interpolate the position embedding')\n",
    "        T = ckpt_num_frame # checkpoint frame\n",
    "        new_T = cur_frame # testing frame\n",
    "        # interpolate\n",
    "        P = int((n_position // cur_frame) ** 0.5) # testing size\n",
    "        C = d_hid\n",
    "        sinusoid_table = sinusoid_table.reshape(-1, T, P, P, C)\n",
    "        sinusoid_table = sinusoid_table.permute(0, 2, 3, 4, 1).reshape(-1, C, T)  # BHW, C, T\n",
    "        sinusoid_table = torch.nn.functional.interpolate(sinusoid_table, size=new_T, mode='linear')\n",
    "        sinusoid_table = sinusoid_table.reshape(1, P, P, C, new_T).permute(0, 4, 1, 2, 3) # B, T, H, W, C\n",
    "        sinusoid_table = sinusoid_table.flatten(1, 3)  # B, THW, C\n",
    "        \n",
    "    return sinusoid_table"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 64,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "n_position: 3136\n",
      "pre_n_position: 784\n",
      "Pretraining uses 4 frames, but current frame is 16\n",
      "Interpolate the position embedding\n",
      "The video contains 16 frames sampled at 0.3, 0.9, 1.5, 2.2, 2.8, 3.4, 4.0, 4.7, 5.3, 5.9, 6.5, 7.2, 7.8, 8.4, 9.0, 9.6 seconds.\n"
     ]
    },
    {
     "data": {
      "text/html": [
       "<video alt=\"test\" controls><source src=\"./example/yoga.mp4\" type=\"video/mp4\"></video>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "execution_count": 64,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "vid_path = \"./example/yoga.mp4\"\n",
    "# vid_path = \"./example/jesse_dance.mp4\"\n",
    "\n",
    "\n",
    "# num_frame = 8\n",
    "num_frame = 16\n",
    "# resolution = 384\n",
    "resolution = 224\n",
    "vid, msg = load_video(vid_path, num_segments=num_frame, return_msg=True, resolution=resolution)\n",
    "new_pos_emb = get_sinusoid_encoding_table(n_position=(resolution//16)**2*num_frame, cur_frame=num_frame)\n",
    "model.vision_encoder.encoder.pos_embed = new_pos_emb\n",
    "\n",
    "print(msg)\n",
    "    \n",
    "# The model expects inputs of shape: T x C x H x W\n",
    "TC, H, W = vid.shape\n",
    "video = vid.reshape(1, TC//3, 3, H, W).to(\"cuda:0\")\n",
    "\n",
    "img_list = []\n",
    "with torch.no_grad():\n",
    "    image_emb, _ = model.encode_img(video, \"Watch the video and answer the question.\")\n",
    "#     image_emb, _ = model.encode_img(video, \"\")\n",
    "\n",
    "img_list.append(image_emb)\n",
    "\n",
    "HTML(f'<video alt=\"test\" controls><source src=\"{vid_path}\" type=\"video/mp4\"></video>')"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 65,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "###Human: <Video><VideoHere></Video>\n",
      "###Human: Describe the video in details.\n",
      "###Assistant:\n",
      "The video shows a woman performing yoga on a mat in a beautiful outdoor setting. She is wearing a black tank top and black leggings. The woman is seen performing various yoga poses, including a forward bend, a downward facing dog, and a bridge pose. The video also shows the woman stretching and doing some breathing exercises. The outdoor setting provides a peaceful and serene atmosphere for the yoga practice.\n"
     ]
    }
   ],
   "source": [
    "chat = EasyDict({\n",
    "    \"system\": \"\",\n",
    "    \"roles\": (\"Human\", \"Assistant\"),\n",
    "    \"messages\": [],\n",
    "    \"sep\": \"###\"\n",
    "})\n",
    "\n",
    "chat.messages.append([chat.roles[0], f\"<Video><VideoHere></Video>\\n\"])\n",
    "ask(\"Describe the video in details.\", chat)\n",
    "\n",
    "llm_message = answer(conv=chat, model=model, do_sample=False, img_list=img_list, max_new_tokens=256, print_res=True)[0]\n",
    "print(llm_message)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 55,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "n_position: 196\n",
      "pre_n_position: 196\n"
     ]
    },
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 640x480 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "img_path = \"./example/dog.png\"\n",
    "# img_path = \"./example/bear.jpg\"\n",
    "img = Image.open(img_path).convert('RGB')\n",
    "\n",
    "plt.imshow(img)\n",
    "\n",
    "resolution = 224\n",
    "# resolution = 384\n",
    "new_pos_emb = get_sinusoid_encoding_table(n_position=(resolution//16)**2, cur_frame=1, ckpt_num_frame=1, pre_n_position=14*14)\n",
    "model.vision_encoder.encoder.img_pos_embed = new_pos_emb\n",
    "\n",
    "transform = transforms.Compose(\n",
    "    [\n",
    "        transforms.Resize(\n",
    "            (resolution, resolution), interpolation=InterpolationMode.BICUBIC\n",
    "        ),\n",
    "        transforms.ToTensor(),\n",
    "        transforms.Normalize((0.48145466, 0.4578275, 0.40821073), (0.26862954, 0.26130258, 0.27577711)),\n",
    "    ]\n",
    ")\n",
    "\n",
    "img = transform(img).unsqueeze(0).unsqueeze(0).cuda()\n",
    "img_list = []\n",
    "with torch.no_grad():\n",
    "#     image_emb, _ = model.encode_img(img, \"\")\n",
    "    image_emb, _ = model.encode_img(img, \"Observe the image and answer the question.\")\n",
    "img_list.append(image_emb)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 56,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "###Human: <Image><ImageHere></Image>\n",
      "###Human: Describe the following image in details.\n",
      "###Assistant:\n",
      "The image depicts a cute little dog lying on a wooden floor. The dog is sleeping and appears to be enjoying its rest. The background of the image is a wooden floor, and the dog is lying on it. The dog is a small brown and white dog, and it is sleeping peacefully. The caption under the image reads \"Just Monday. Just Monday. Just Monday.\" This suggests that the dog is taking a break from its daily routine and enjoying its rest.\n"
     ]
    }
   ],
   "source": [
    "chat = EasyDict({\n",
    "    \"system\": \"\",\n",
    "    \"roles\": (\"Human\", \"Assistant\"),\n",
    "    \"messages\": [],\n",
    "    \"sep\": \"###\"\n",
    "})\n",
    "\n",
    "chat.messages.append([chat.roles[0], f\"<Image><ImageHere></Image>\\n\"])\n",
    "ask(\"Describe the following image in details.\", chat)\n",
    "\n",
    "llm_message = answer(conv=chat, model=model, do_sample=False, img_list=img_list, max_new_tokens=256, print_res=True,)[0]\n",
    "print(llm_message)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "vl",
   "language": "python",
   "name": "vl"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.7.12"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 2
}
